This paper presents a new method for spatially adaptive local (constant) likelihood estimation which applies to a broad class of nonparametric models, including the Gaussian, Poisson and binary response models. The main idea of the method is, given a sequence of local likelihood estimates (“weak” estimates), to construct a new aggregated estimate whose pointwise risk is of order of the smallest risk among all “weak” estimates. We also propose a new approach toward selecting the parameters of the procedure by providing the prescribed behavior of the resulting estimate in the simple parametric situation. We establish a number of important theoretical results concerning the optimality of the aggregated estimate. In particular, our “oracle” res...
Efficient semiparametric and parametric estimates are developed for a spatial autoregressive model, ...
In the white noise model we construct an adaptive estimate for the value of a function at a point wh...
International audienceThis paper presents a general methodology for nonparametric estimation of a fu...
This paper presents a new method for spatially adaptive local (constant) likelihood estimation which...
The paper presents a unified approach to local likelihood estimation for a broad class of nonparamet...
This paper offers a new technique for spatially adaptive estimation. The local likelihood is exploit...
This paper offers a new technique for spatially adaptive estimation. The local likelihood is exploit...
The paper presents a unified approach to local likelihood estimation for a broad class of nonparamet...
This paper offers a new technique for spatially adaptive ltering. The tted local likelihood (FLL) st...
This paper offers a new technique for spatially adaptive filtering. The fitted local likelihood (FLL...
E ¢ cient semiparametric and parametric estimates are developed for a spatial autoregressive model, ...
In a general class of semiparametric pure spatial models (having no explanatory variables) allowing ...
We consider a signal restoration from observations corrupted by random noise. The local maximum like...
This paper describes a technique for computing approximate maximum pseudolikelihood estimates of the...
We describe a technique for computing approximate maximum pseudolikelihood estimates of the paramete...
Efficient semiparametric and parametric estimates are developed for a spatial autoregressive model, ...
In the white noise model we construct an adaptive estimate for the value of a function at a point wh...
International audienceThis paper presents a general methodology for nonparametric estimation of a fu...
This paper presents a new method for spatially adaptive local (constant) likelihood estimation which...
The paper presents a unified approach to local likelihood estimation for a broad class of nonparamet...
This paper offers a new technique for spatially adaptive estimation. The local likelihood is exploit...
This paper offers a new technique for spatially adaptive estimation. The local likelihood is exploit...
The paper presents a unified approach to local likelihood estimation for a broad class of nonparamet...
This paper offers a new technique for spatially adaptive ltering. The tted local likelihood (FLL) st...
This paper offers a new technique for spatially adaptive filtering. The fitted local likelihood (FLL...
E ¢ cient semiparametric and parametric estimates are developed for a spatial autoregressive model, ...
In a general class of semiparametric pure spatial models (having no explanatory variables) allowing ...
We consider a signal restoration from observations corrupted by random noise. The local maximum like...
This paper describes a technique for computing approximate maximum pseudolikelihood estimates of the...
We describe a technique for computing approximate maximum pseudolikelihood estimates of the paramete...
Efficient semiparametric and parametric estimates are developed for a spatial autoregressive model, ...
In the white noise model we construct an adaptive estimate for the value of a function at a point wh...
International audienceThis paper presents a general methodology for nonparametric estimation of a fu...